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Papers/Cascade Cost Volume for High-Resolution Multi-View Stereo ...

Cascade Cost Volume for High-Resolution Multi-View Stereo and Stereo Matching

Xiaodong Gu, Zhiwen Fan, Zuozhuo Dai, Siyu Zhu, Feitong Tan, Ping Tan

2019-12-13CVPR 2020 6Stereo MatchingPoint Clouds3D Reconstruction
PaperPDFCodeCodeCode(official)Code

Abstract

The deep multi-view stereo (MVS) and stereo matching approaches generally construct 3D cost volumes to regularize and regress the output depth or disparity. These methods are limited when high-resolution outputs are needed since the memory and time costs grow cubically as the volume resolution increases. In this paper, we propose a both memory and time efficient cost volume formulation that is complementary to existing multi-view stereo and stereo matching approaches based on 3D cost volumes. First, the proposed cost volume is built upon a standard feature pyramid encoding geometry and context at gradually finer scales. Then, we can narrow the depth (or disparity) range of each stage by the depth (or disparity) map from the previous stage. With gradually higher cost volume resolution and adaptive adjustment of depth (or disparity) intervals, the output is recovered in a coarser to fine manner. We apply the cascade cost volume to the representative MVS-Net, and obtain a 23.1% improvement on DTU benchmark (1st place), with 50.6% and 74.2% reduction in GPU memory and run-time. It is also the state-of-the-art learning-based method on Tanks and Temples benchmark. The statistics of accuracy, run-time and GPU memory on other representative stereo CNNs also validate the effectiveness of our proposed method.

Results

TaskDatasetMetricValueModel
3D ReconstructionDTUAcc0.325Cas-MVSNet
3D ReconstructionDTUComp0.385Cas-MVSNet
3D ReconstructionDTUOverall0.355Cas-MVSNet
3DDTUAcc0.325Cas-MVSNet
3DDTUComp0.385Cas-MVSNet
3DDTUOverall0.355Cas-MVSNet
Point CloudsTanks and TemplesMean F1 (Advanced)31.12Cas-MVSNet
Point CloudsTanks and TemplesMean F1 (Intermediate)56.84Cas-MVSNet

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